AI & Machine Learning

AI & Machine Learning Bootcamp

Immerse yourself in the captivating world of AI and learn how to make the next internet-breaking AI model

$14,900.00 USD
$9,900.00 USD
Financing and flexible payment options available.

Upcoming Cohort Start Dates

New cohorts start the first Monday of every month.

May 4, 2026
Full-time | Part-time
June 1, 2026
Full-time | Part-time
July 6, 2026
Full-time | Part-time

Overview

Kickstart a career in artificial intelligence

Career training & mentorship from experienced AI specialists

Learn to develop AI models with the world’s most popular languages, tools, and techniques. From learning the basics of Python to creating your first artificial intelligence - whatever you want to create, we’ll get you there. We won't only teach you how to create industry-level projects, but also how to learn and adapt. You'll graduate with a portfolio of projects and a professional portfolio ready to take on the AI specialist job market.

The UofU ProEd // Flatiron School difference:

  • Be mentored by a world-class AI specialist
  • Small group classes (max 8 students)
  • 100% online programs

Career services built-in

Career services is included with each capstone and bootcamp program. Designed by and for tech professionals, you'll experience a full technical interview process from start to finish, getting direct and personalized feedback each step of the way. Visit the Career Services page to learn more about the full process.

Curriculum

AI and Data Science Essentials

Introduction to Python

FT: 1 week | PT: 3 weeks

This introduction to Python course is designed to equip you with essential skills applicable to data science. Throughout this course, you'll delve into fundamental programming concepts starting with scripting basics, understanding compiled vs. interpreted languages, and creating algorithms for simple tasks. You'll explore operators, loops (while and for), and data structures like tuples, lists, dictionaries, and strings. Additionally, you'll learn about libraries and functions, enabling you to leverage Python's extensive ecosystem for complex tasks. This course culminates in a project where you are tasked with developing a Python script to analyze data in a file. By the end of the course, you will have developed your understanding to develop efficient code, and tackle real-world challenges in the technical domain of data science.

What you'll learn:

  • Apply the basics of programming language methodologies to real world scenarios
  • Demonstrate foundational skills for scripting with a programming language, Python

Course focus:

  • Python
  • Data analysis with programming

Introduction to Data Science

FT: 1 week | PT: 3 weeks

You will embark on an immersive journey into the world of data analysis and visualization using Python. Throughout this course, you'll learn essential statistical measures, explore different types of data, and master data analysis techniques using the pandas library. You'll delve into data visualization with Python libraries such as Seaborn and Matplotlib, gaining insights into qualitative, quantitative, and multivariate data. The course culminates in a project, wherein you will apply your knowledge to perform a full exploratory data analysis process, demonstrate proficiency in descriptive data analysis and visualization using pandas. By the end of this course, you'll emerge equipped with the skills to gather insights from data, perform advanced data analysis, and effectively communicate your findings through visualizations and descriptive statistics.

What you'll learn:

  • Implement foundational statistical measurement with data using scripting
  • Demonstrate gathering insights from data with visualizations
  • Integrate object oriented programming (OOP) with Python for data cleaning and analysis

Course focus:

  • Python
  • Seaborn and Matplotlib
  • Statistical measures
  • Data Analysis
  • Data Visualization

Introduction to SQL

FT: 1 week | PT: 3 weeks

This course is designed to equip you with essential skills in structured query language (SQL), data engineering, database administration, and data analysis. Learn the essentials of mathematics, probability, and statistics for data science as well as learn how to perform more advanced data analysis and cleaning with Python. Throughout this course, you'll start by getting familiar with SQL, learning how to connect to databases, and performing basic queries. As you progress, you'll delve into more advanced topics such as filtering, ordering, and grouping data, as well as understanding table relations and implementing joins and subqueries. In the culminating project, you will demonstrate proficiency in SQL by applying queries on a database within a Python environment and reflecting on the database design and outputs. This project serves as a practical assessment of your ability to conceptually apply SQL knowledge and understanding of database concepts, preparing you for real-world data science challenges.

What you'll learn:

  • Utilize industry standard techniques to analyze data with, programming language (Python), structured query language (SQL), and the cloud
  • Explore and manipulate data with mathematics, probability, and statistics
  • Analyze data for a business problem with visualizations with a dashboard

Course focus:

  • Python
  • SQL
  • Data Engineering

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AI and Data Science Foundations I

Cloud Computing, Generative AI, & Dashboards

FT: 1 week | PT: 3 weeks

This course dives into cloud computing's cost-effective, scalable ecosystem for distributed data processing. Master technical components like PySpark to bridge Python, SQL, and Spark, to manipulate structured and semi-structured data. Leverage libraries to Numpy, Pandas, and PySpark to pull in "big data". You will craft stunning visualizations with Python libraries like Seaborn. Finally, explore the cutting-edge of data analysis with generative AI and advanced dashboards, culminating in a project that brings big data to life through interactive visualizations.

What you'll learn: 

  • Create a dashboard using data science methodologies with industry standard tool(s)
  • Model exploratory data analysis with tools for multiple data sets with SQL and SQL table relations
  • Utilize programming techniques to process large data samples with large-scale processing like PySpark with big data

Course focus:

  • Pyspark
  • SQL
  • Numpy
  • Pandas
  • Data Visualization 
  • Big Data

Inferential Statistics

FT: 1 week | PT: 3 weeks

In this course you will perform statistical inference with Python. This course equips you with the foundational theory and practical skills to analyze data. Learn about probability distributions, confidence intervals, hypothesis testing, and more. Apply these techniques to single proportions, means, and categorical data. Explore advanced methods for two or more groups and tackle multivariate datasets. This culminates with your final project where you'll showcase your ability to use a multivariate dataset and perform a myriad of the appropriate methods of statistical inference.

What you'll learn: 

  • Integrate statistical inference of data using the technical programming
  • Implement methodologies for statistical inference
  • Utilize mathematics, statistics, and probability for data science methodologies to derive insights

Course focus:

  • Pyspark
  • Statistical inference 
  • Multivariate datasets
  • Big Data

Regression

FT: 1 week | PT: 3 weeks

This course equips you with the skills to tackle real-world datasets with regression. Master linear regression, exploring diagnostics to ensure model validity. Delve into multiple linear regression, learning to evaluate, diagnose, and leverage its predictive power. Discover advanced techniques like transformations, interactions, and model selection. Explore bias-variance tradeoff and master regularization methods like Lasso and Ridge regression. Finally, in the culminating project, showcase your expertise by building and interpreting a powerful multiple linear regression model.

What you'll learn: 

  • Perform logistic regression with data sets using programming techniques, lasso, and ridge
  • Compare statistical results for different types of regression with data sets, linear, transformations of linear, and multiple linear regressions
  • Utilize mathematics, statistics, and probability for data science methodologies to derive insights

Course focus:

  • Linear regression
  • Modeling with data
  • Big Data

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AI and Data Science Foundations II

Introduction to Machine Learning

FT: 1 week | PT: 3 weeks

In this course you will begin to learn the fundamentals of AI, machine learning models. Explore core concepts like statistical learning theory and supervised learning. Delve into diverse models like logistic regression, decision trees, and support vector machines. Learn to evaluate and compare their performance using metrics like ROC AUCs. Finally, in the culminating project, showcase your mastery of the data science pipeline by selecting and deploying the ideal model for a specific task.

What you'll learn: 

  • Utilize foundational machine learning modeling like decision trees and supervised learning
  • Prepare data for machine learning modeling with preprocessing (feature extraction) and normalization
  • Utilize mathematics, statistics, and probability for data science methodologies to derive insights

Course focus:

  • AI and Machine Learning
  • Modeling with data
  • Logistical Regression
  • Deploying a model

Machine Learning with Scikit-Learn

FT: 1 week | PT: 3 weeks

In this course you will be introduced to a range of supervised and unsupervised machine learning models. You will explore distance metrics and the foundation for k-Nearest Neighbors, a popular supervised learning model for classification. Dive into recommender systems, leveraging SVD for both supervised and unsupervised learning tasks. Learn clustering techniques like k-means, and explore dimensionality reduction with Principal Component Analysis (PCA) for an unsupervised learning model. Finally, conquer the culminating project: build both a supervised (k-Nearest Neighbors) and unsupervised (k-means) learning model, showcasing your ability to tackle classification and clustering tasks.

What you'll learn: 

  • Utilize foundational machine learning modeling like decision trees and supervised learning
  • Prepare data for machine learning modeling with preprocessing (feature extraction) and normalization
  • Integrate mathematics, statistics, and probability for data science methodologies to derive insights 

Course focus:

  • Supervised and unsupervised machine learning
  • Principal Component Analysis (PCA)
  • Deploying models

Natural Language Processing, Time Series & Neural Networks

FT: 1 week | PT: 3 weeks

This course equips you with the skills to build cutting-edge models. Master natural language processing (NLP), exploring techniques like text classification, and vectorization. Delve into time series analysis, learning to manage, visualize, and model trends in data. Finally, dive into the fascinating world of neural networks, understanding their theory and implementation with Keras. In the culminating project, showcase your mastery by building three distinct models: a language model, a time series model, and a basic neural network.

What you'll learn: 

  • Develop insights from language, time, and image data using neural networks and Natural Language Processing (NLP)
  • Integrate mathematics, statistics, and probability for data science methodologies to derive insights

Neural Networks & Similar Models

FT: 1 week | PT: 3 weeks

In this course you will learn how to build upon your neural network foundation. Master normalization and regularization techniques to optimize your models. Delve into Convolutional Neural Networks (CNNs) for powerful image classification. Explore Recurrent Neural Networks (RNNs) and unlock their potential for forecasting and sequence data analysis. Finally, unveil the cutting-edge world of transformers and BERT, culminating in a project that showcases your expertise in building an advanced neural network application.

What you'll learn: 

  • Create an advanced neural network application
  • Integrate mathematics, statistics, and probability for data science methodologies to derive insights

Course focus:

  • Advanced Neural Network
  • Advanced Neural Network Application

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AI and Data Science Capstone

Large Language Models

FT: 1 week | PT: 3 weeks

This course equips you with the skills to deploy and optimize cutting-edge machine learning systems in real-world scenarios. You will explore the open-source MLOps stack, learning to manage the entire ML lifecycle, including deployment, monitoring, and version control. The course emphasizes data-centric approaches for enhancing the performance of large language models (LLMs) through high-quality data curation and preprocessing. You will also master techniques for fine-tuning pre-trained models and leveraging prompt engineering to optimize output for specific tasks. By the end of the course, you will be adept at integrating and maintaining advanced AI solutions in dynamic environments.

What you'll do:

  • Utilize machine learning models and the open-source MLOps Stack
  • Integrate data-centric LLMs with data science methodologies to derive insights
  • Leverage model fine-tuning and prompt engineering to optimize business solution oriented outputs

Course focus:

  • MLOps Stack 
  • LLMs
  • Prompt Engineering 

Prerequisites:

  • Course: Introduction to Machine Learning
  • Course: Machine Learning with Scikit-Learn
  • Course: Natural Language Processing, Time Series & Neural Networks

AI Capstone 

FT: 4 weeks | PT: 12 weeks

In this intensive course you will be tasked with developing 2 different projects. In these projects you will be expected to frame your projects around solving a business problem. You will be expected to bring all your skills from Foundations together to build 2 different methods: a classification supervised model, and a classified unsupervised large language model.

What you'll do:

  • Integrate data science process using at least one method of non-regression supervised learning
  • Integrate data science process using at least one method of non-regression unsupervised learning
  • Utilize mathematics, statistics, & probability for data science methodologies to derive business insights

Prerequisites:

  • Course: Introduction to Machine Learning
  • Course: Machine Learning with Scikit-Learn
  • Course: Natural Language Processing, Time Series & Neural Networks
  • Course: Neural Networks & Similar Models
  • Course: Large Language Models

Tuition

Pay Upfront

$9,900

Pay as You Study

$13,500

12 monthly payments of $1,125

Financed Tuition

$14,900

Monthly payments as low as $323

AI & Machine Learning

Possible Careers

The demand for AI specialized Data Scientists remains at an all-time high. In fact, The Bureau of Labor & Statistics projects a 36% national growth for Data Science roles from 2021 to 2031, which is faster than the average for all occupations. Here are some in-demand jobs you could land.

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courses

Bootcamp Courses

Whether you’re a beginner or already have experience, we have programs for your skill level and area of interest.

AI & Machine Learning Essentials

Lay the groundwork for analyzing data and providing business insights that drive decision-making with Python, SQL, and data visualization.

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AI & Machine Learning Foundations I

Delve deeper into data science with advanced data processing, regression analysis, and machine learning.

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AI & Machine Learning Foundations II

Continue your journey by diving into more complex machine learning models, neural networks, natural language processing, and time series analysis.

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AI & Machine Learning Capstone

Demonstrate your mastery of data science principles, advanced analytics, and machine learning models with 3 industry-level portfolio projects.

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FAQs

Can I study part-time while keeping my current job?

Yes. The AI & Data Science Certificate (Part-Time) is designed exactly for this. At 20 hours per week over 15 months, you can stay fully employed while building AI fluency at a sustainable pace. It’s built for working professionals who want to upskill into AI and add technical depth to an existing career without stepping away from their current role.

How does the apprenticeship work in work-integrated programs?

Flatiron facilitates the employer match. You’ll work approximately 20 hours per week in a production-aligned environment alongside your coursework. Apprenticeships are paid and supervised by a workplace supervisor.

How do I know if I qualify for the Accelerated track?

If you have production coding experience – frontend, backend, or full-stack, and you feel the pressure of AI reshaping what it means to be a strong engineer, you likely qualify. This isn’t a beginner course; it’s a rigorous upskilling path for engineers who don’t want to lose momentum. Speak with an Admissions rep to confirm. If you don’t have that background, the Work-Integrated: AI Engineering Immersive is the right work-integrated option for you.

Do I need prior experience to apply?

Most programs have no prerequisites. You just need to be 18+, have a high school diploma or equivalent, and have English proficiency. Whether you’re a recent grad, someone transitioning from a non-technical field, or a working professional looking to pivot, you’re eligible. The one exception is the Accelerated AI Engineering Immersive, which requires existing software engineering experience (midlevel or higher) because it’s built for engineers who are already in production environments.

What’s the difference between a certificate program and a work-integrated program?

Certificate programs are purely educational. You learn, build a portfolio, and graduate ready for the job search. If you’re entering the workforce or transitioning from a non-technical field and want a clear, structured path, this is for you. Work-integrated programs combine coursework with a paid apprenticeship, so you gain work experience and income during the program. This is a strong fit for professionals who need income continuity during a pivot, or experienced engineers who want production AI exposure from day one. Both award the same professional certificate upon completion.

Still have questions?

Our team is here to help.

Let’s Get You Hired!

Career services are included with each capstone and bootcamp program. Designed by and for tech professionals, you’ll experience a full, technical interview process from start to finish, getting direct and personalized feedback each step of the way.

It's easy to apply and get started in our programs in just a few short weeks

  • Take the Assessment
  • Create a Genius Account
  • Secure Financing or Pay in Full
  • Sign Enrollment Agreement

Essentials is the first building block to starting a career in the field of your choosing. Learn the basics and build from there!

Our Foundations programs are the second step in our three-part curriculum where you will learn advanced concepts and techniques needed to become professional in the field of your choosing!

In the Capstone program, you will be expected to bring all your skills from Essentials and Foundations together to develop portfolio projects while beginning to meet with your Career Coach to prepare for your job search!

Weekly or bi-weekly meetings with your coach to review:

  • Wins & challenges
  • Review job openings
  • Interview prep
  • Salary negotiations

Certificate in hand, support doesn't end with the completion of curriculum and career services.

Join our network of over 20k alumni from around the globe through Discord groups, conferences, events, and meetups.

Start Building What's Next

Join 20,000+ Flatiron alumni now working in AI, data science, software engineering, and cybersecurity across industries.